• Title of article

    VHR Semantic Labeling by Random Forest Classification and Fusion of Spectral and Spatial Features on Google Earth Engine

  • Author/Authors

    Kakooei ، M. Electrical Computer Engineering Department - Babol Noshirvani University of Technology , Baleghi ، Y. Electrical Computer Engineering Department - Babol Noshirvani University of Technology

  • From page
    357
  • To page
    370
  • Abstract
    Semantic labeling is an active field in remote sensing applications. Although handling high detailed objects in Very High Resolution (VHR) optical image and VHR Digital Surface Model (DSM) is a challenging task, it can improve the accuracy of semantic labeling methods. In this paper, a semantic labeling method is proposed by fusion of optical and normalized DSM data. Spectral and spatial features are fused into a Heterogeneous Feature Map to train the classifier. Evaluation database classes are impervious surface, building, low vegetation, tree, car, and background. The proposed method is implemented on Google Earth Engine. The method consists of several levels. First, Principal Component Analysis is applied to vegetation indexes to find maximum separable color space between vegetation and nonvegetation area. Gray Level Cooccurrence Matrix is computed to provide texture information as spatial features. Several Random Forests are trained with automatically selected train dataset. Several spatial operators follow the classification to refine the result. LeafLessTree feature is used to solve the underestimation problem in tree detection. Area, major and, minor axis of connected components are used to refine building and car detection. Evaluation shows significant improvement in tree, building, and car accuracy. Overall accuracy and Kappa coefficient are appropriate.
  • Keywords
    Very High Resolution Semantic Labeling , Spatial Feature , Google Earth Engine , Grey Level Co , Occurrence Matrix , Random Forest , Leafless Tree
  • Journal title
    Journal of Artificial Intelligence and Data Mining
  • Journal title
    Journal of Artificial Intelligence and Data Mining
  • Record number

    2593394